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Implementation of fuzzy c-means clustering for Psoriasis Assessment on lesion erythema

机译:银屑病皮损评估中的模糊c均值聚类的实现

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Psoriasis is a skin disease that causes the appearance of reddish and scaly skin lesions. Lesion erythema, which refers to the inflammation (colour) of psoriasis lesion, is defined as one of Psoriasis Area and Severity Index (PASI) parameters. However, visual assessment by dermatologists is subjective and results in inter-rater variations. In this paper, an objective PASI erythema-scoring algorithm has been developed. The colour of lesion erythema was found to be dependent on the normal skin tone of the affected person. Normal skin tones are categorised into four groups (dark, brown, light brown and fair skins). A soft clustering is applied to solve the ambiguity problems at cluster boundaries. CIE L*a*b* data of lesions and their surrounding normal skin are used to calculate lesion erythema. The hue difference between lesion and normal skin corresponds to the lesion erythema. Two dedicated fuzzy c-means (FCM) algorithms are applied consecutively to classify normal skin tone and to score PASI erythema. 2,322 normal skin and 1,462 lesions samples from 204 recruited patients at Hospital Kuala Lumpur are used to build skin tone and PASI erythema score classifiers respectively. Agreement values between first and second assessments of 430 lesions for PASI erythema are determined to evaluate scoring performance. Kappa coefficients are found ≥ 0.70 for all skin tones (fair - 0.70, light brown - 0.8, brown - 0.79, and dark skin - 0.90). These agreement results show that the proposed method is reliable and objective, and thus can be used for clinical practices.
机译:牛皮癣是一种皮肤病,可导致皮肤发红和鳞屑。病变性红斑是指牛皮癣病变的炎症(颜色),被定义为牛皮癣面积和严重性指数(PASI)参数之一。但是,皮肤科医生的视觉评估是主观的,并且会导致评估者之间的差异。本文开发了一种客观的PASI红斑评分算法。发现病变红斑的颜色取决于受影响人的正常肤色。正常肤色分为四类(深色,棕色,浅棕色和白皙的皮肤)。应用软聚类来解决聚类边界处的歧义问题。病变及其周围正常皮肤的CIE L * a * b *数据用于计算病变红斑。病变和正常皮肤之间的色调差异对应于病变红斑。连续应用两种专用的模糊c均值(FCM)算法对正常肤色进行分类并对PASI红斑进行评分。来自吉隆坡医院204名新征患者的2,322例正常皮肤和1,462个病变样本分别用于建立肤色和PASI红斑评分分类器。确定430个PASI红斑病变的第一次和第二次评估之间的一致性值,以评估评分表现。发现所有肤色的Kappa系数均≥0.70(白皙-0.70,浅褐色-0.8,棕色-0.79和深色皮肤-0.90)。这些一致的结果表明,该方法可靠,客观,可用于临床。

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